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Approaching Dialogue State Tracking via Aligning Speech Encoders and LLMs

Approaching Dialogue State Tracking via Aligning Speech Encoders and LLMs

来源:Arxiv_logoArxiv
英文摘要

In this work, we approach spoken Dialogue State Tracking (DST) by bridging the representation spaces of speech encoders and LLMs via a small connector module, with a focus on fully open-sourced and open-data components (WavLM-large, OLMo). We focus on ablating different aspects of such systems including full/LoRA adapter fine-tuning, the effect of agent turns in the dialogue history, as well as fuzzy matching-based output post-processing, which greatly improves performance of our systems on named entities in the dialogue slot values. We conduct our experiments on the SpokenWOZ dataset, and additionally utilize the Speech-Aware MultiWOZ dataset to augment our training data. Ultimately, our best-performing WavLM + connector + OLMo-1B aligned models achieve state of the art on the SpokenWOZ test set (34.66% JGA), and our system with Gemma-2-9B-instruct further surpasses this result, reaching 42.17% JGA on SpokenWOZ test.

?imon Sedlá?ek、Bolaji Yusuf、Ján ?vec、Pradyoth Hegde、Santosh Kesiraju、Old?ich Plchot、Jan ?ernocky

计算技术、计算机技术

?imon Sedlá?ek,Bolaji Yusuf,Ján ?vec,Pradyoth Hegde,Santosh Kesiraju,Old?ich Plchot,Jan ?ernocky.Approaching Dialogue State Tracking via Aligning Speech Encoders and LLMs[EB/OL].(2025-06-10)[2025-07-03].https://arxiv.org/abs/2506.08633.点此复制

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